Audrey Moore (actress)
Audrey Moore is an American actress. She is best known for her role in the Netflix series Godless.[1] She is also known for her roles in Better Call Saul and Manhattan.[2]
Audrey Moore | |
---|---|
Occupation | Actress |
Years active | 2007–present |
Filmography
Film
Year | Title | Role | Notes |
---|---|---|---|
2009 | The Inner Circle | Patty Brown | |
2010 | Method Acting | Camille Patterson |
Television
Year | Title | Role | Notes |
---|---|---|---|
2007 | Damages | Waitress | Episode: "Get Me a Lawyer" |
2008 | The Riches | Margarette | 1 episode |
2012 | CSI: Miami | Carol Church | 1 episode |
2012 | The Middle | OTI Lady | 1 episode |
2014-2015 | Manhattan | Francine | 7 episodes |
2015 | Silicon Valley | Makeup Artist | 1 episode |
2015 | The Night Shift | Reporter | 1 episode |
2015 | Code Black | Ms. Fitz | 3 episodes |
2015 | Bella and the Bulldogs | Reporter | 1 episode |
2017 | Feud | Reporter | 1 episode |
2017 | Better Call Saul | Julie | 4 episodes |
2017 | Godless | Sarah Doyle | 7 episodes |
2018 | Lucifer | Anya | 1 episode |
2018 | Stuck in the Middle | Coach Heller | 1 episode |
2018 | Castle Rock | Mrs. Strand | 1 episode |
gollark: > Base2048 is a binary encoding optimised for transmitting data through Twitter. This JavaScript module, base2048, is the first implementation of this encoding. Using Base2048, up to 385 octets can fit in a single Tweet. Compare with Base65536, which manages only 280 octets.
gollark: https://github.com/qntm/base2048
gollark: The language's written form should use base2048 in order to be optimized for tweets.
gollark: We will remove the word "based" from the language.
gollark: Explain.
References
- "'Godless' Adds Sam Waterston, Kim Coates, More; Scoot McNairy Confirmed". Deadline. September 6, 2016. Retrieved November 23, 2017.
- "'Godless' actress Audrey Moore looks forward to her next hospital visit". NY Daily News. November 18, 2017. Retrieved November 23, 2017.
External links
- Audrey Moore on IMDb
This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.